Patentable/Patents/US-10638092
US-10638092

Hybrid camera network for a scalable observation system

PublishedApril 28, 2020
Assigneenot available in USPTO data we have
Inventorsnot available in USPTO data we have
Technical Abstract

A method, a non-transitory computer readable medium, and a system are disclosed for observing one or more subjects. The method includes monitoring a space with at least one master sensor, wherein a plurality of secondary sensors are installed in the space, and wherein a number of the at least one master sensor is less than a number of the plurality of secondary sensors; detecting regions of interest based on input from the at least one master sensor; identifying one or more secondary sensors from the plurality of secondary sensors in the detected regions of interest; and recognizing activities in the detected regions of interest from the one or more secondary sensors.

Patent Claims
20 claims

Legal claims defining the scope of protection, as filed with the USPTO.

1

1. A method for observing one or more subjects, the method comprising: monitoring a space with at least one master sensor, wherein a plurality of secondary sensors are installed in the space, and wherein a number of the at least one master sensor is less than a number of the plurality of secondary sensors; dividing the space into a grid architecture, the grid architecture having a plurality of cells, each of the cells having two or more secondary sensors, and wherein the grid architecture is based on a horizontal field of view and other attributes of each of the two or more secondary sensors; detecting regions of interest based on input from the at least one master sensor and one or more of statistical results of movement in the space during a predetermined period of time or time frame and prior knowledge of an environment within the space; assigning the detected regions of interest to one or more of the cells, and activating the two or more secondary sensors in each of the cells within the detected regions of interest, and wherein the two or more activated secondary sensors are configured to fully cover and monitor the detected regions of interest; identifying the two or more activated secondary sensors from the plurality of secondary sensors in the detected regions of interest; and recognizing activities in the detected regions of interest from the two or more activated secondary sensors.

2

2. The method of claim 1 , wherein the detecting of regions of interest comprises: detecting one or more subjects in the space based on the input from the master sensor and the one or more of the statistical results of movement in the space during the predetermined period of time or time frame and the prior knowledge of the environment within the space; tracking each of the one or more subjects in the space by calculating a current location; updating the current location of each of the one or more subjects; and updating the detected regions of interest based on the updated current location of each of the one or more subjects.

3

3. The method of claim 1 , comprising: activating all of the plurality of secondary sensors; and analyzing data only from the two or more activated secondary sensors in the detected regions of interest.

4

4. The method of claim 1 , comprising: deactivating secondary sensors of the plurality of secondary sensors in each of the cells, which are not regions of interest.

5

5. The method of claim 1 , comprising: analyzing data from the two or more activated secondary sensors for activity recognition; and identifying one or more additional secondary sensors of the plurality of secondary sensors if additional data is needed for the activity recognition.

6

6. The method of claim 1 , comprising: applying the activity recognition to one or more applications, the one or more applications include monitoring of one or more subjects within the space, and/or environmental feedback including heating and cooling of the space.

7

7. The method of claim 1 , comprising: generating a heat map of activity within the space; and detecting the regions of interest based on the heat map.

8

8. The method of claim 1 , wherein each of secondary sensors has a horizontal field of range and a depth of operation range, the method further comprising: arranging the secondary sensors in a horizontal arrangement and a vertical arrangement, and wherein the secondary sensors are each arranged at a distance not to exceed a maximum horizontal sensor to sensor distance and a maximum vertical sensor to sensor distance.

9

9. A non-transitory computer readable medium containing a computer program storing computer readable code for observing one or more subjects, the program being executable by a computer to cause the computer to perform a process comprising: monitoring a space with at least one master sensor, wherein a plurality of secondary sensors are installed in the space, and wherein a number of the at least one master sensor is less than a number of the plurality of secondary sensors; dividing the space into a grid architecture, the grid architecture having a plurality of cells, each of the cells having two or more secondary sensors, and wherein the grid architecture is based on a horizontal field of view and other attributes of each of the two or more secondary sensors; detecting regions of interest based on input from the at least one master sensor and one or more of statistical results of movement in the space during a predetermined period of time or time frame and prior knowledge of an environment within the space; assigning the detected regions of interest to one or more of the cells, and activating the two or more secondary sensors in each of the cells within the detected regions of interest, and wherein the two or more activated secondary sensors are configured to fully cover and monitor the detected regions of interest; identifying the two or more activated secondary sensors from the plurality of secondary sensors in the detected regions of interest; and recognizing activities in the detected regions of interest from the two or more activated secondary sensors.

10

10. The non-transitory computer readable medium of claim 9 , wherein the detecting of regions of interest comprises: detecting subjects in the space based on the input from the master sensor and the one or more of the statistical results of movement in the space during a predetermined period of time or time frame and the prior knowledge of the environment within the space; tracking each of the one or more subjects in the space by calculating a current location; updating the current location of each of the one or more subjects; and updating the detected regions of interest based on the updated current location of each of the one or more subjects.

11

11. The non-transitory computer readable medium of claim 9 , comprising: activating all of the plurality of secondary sensors; and analyzing data only from the two or more activated secondary sensors in the detected regions of interest.

12

12. The non-transitory computer readable medium of claim 9 , comprising: deactivating secondary sensors of the plurality of secondary sensors in each of the cells, which are not regions of interest.

13

13. The non-transitory computer readable medium of claim 9 , comprising: analyzing data from the two or more activated secondary sensors for activity recognition; and identifying one or more additional secondary sensors of the plurality of secondary sensors if additional data is needed for the activity recognition.

14

14. The non-transitory computer readable medium of claim 9 , wherein each of the secondary sensors have a horizontal field of range and a depth of operation range, the process further comprising: arranging the secondary sensors in a horizontal arrangement and a vertical arrangement, and wherein the secondary sensors are each arranged at a distance not to exceed a maximum horizontal sensor to sensor distance and a maximum vertical sensor to sensor distance.

15

15. A system for observing one or more subjects, the system comprising: at least one master sensor for monitoring a space; a plurality of secondary sensors installed in the space, wherein a number of the at least one master sensor is less than a number of the plurality of secondary sensors; and a processor configured to: divide the space into a grid architecture, the grid architecture having a plurality of cells, each of the cells having two or more secondary sensors, and wherein the grid architecture is based on a horizontal field of view and other attributes of each of the two or more secondary sensors; detect regions of interest based on input from the at least one master sensor and one or more of statistical results of movement in the space during a predetermined period of time or time frame and prior knowledge of an environment within the space; assign the detected regions of interest to one or more of the cells, and activating the two or more secondary sensors in each of the cells within the detected regions of interest, and wherein the two or more activated secondary sensors are configured to fully cover and monitor the detected regions of interest; identify the two or more activated secondary sensors from the plurality of secondary sensors in the detected regions of interest; and recognize activities in the detected regions of interest from the two or more activated secondary sensors.

16

16. The system of claim 15 , wherein the detecting of regions of interest comprises: detecting one or more subjects in the space based on the input from the master sensor and the one or more of the statistical results of movement in the space during a predetermined period of time or time frame and the prior knowledge of the environment within the space; tracking each of the one or more subjects in the space by calculating a current location; updating the current location of each of the one or more subjects; and updating the detected regions of interest based on the updated current location of each of the one or more subjects.

17

17. The system of claim 15 , wherein all of the plurality of secondary sensors are activated; and the processor is configured to: analyze data only from the two or more activated secondary sensors in the detected regions of interest.

18

18. The system of claim 15 , wherein the processor is configured to: deactivate secondary sensors of the plurality of secondary sensors in each of the cells, which are not regions of interest.

19

19. The system of claim 15 , wherein the processor is configured to: analyze data from the two or more activated secondary sensors for activity recognition; identify one or more additional secondary sensors if additional data is needed for the activity recognition; and apply the activity recognition to one or more applications, the one or more applications including monitoring of one or more subjects within the space, and/or environmental feedback including heating and cooling of the space.

20

20. The system of claim 15 , wherein each of the two or more activated secondary sensors have a horizontal field of range and a depth of operation range, the secondary sensors being arranged in a horizontal arrangement and a vertical arrangement, and wherein the secondary sensors are each arranged at a distance not to exceed a maximum horizontal sensor to sensor distance and a maximum vertical sensor to sensor distance.

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Patent Metadata

Filing Date

March 29, 2017

Publication Date

April 28, 2020

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Cite as: Patentable. “Hybrid camera network for a scalable observation system” (US-10638092). https://patentable.app/patents/US-10638092

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